chameleon-llm
Composition tool
An AI framework that enables the composition of diverse tools to generate human-like responses using large language models.
Codes for "Chameleon: Plug-and-Play Compositional Reasoning with Large Language Models".
1k stars
19 watching
89 forks
Language: Jupyter Notebook
last commit: 11 months ago aichatgptgpt-4llmopenaipythontool
Related projects:
Repository | Description | Stars |
---|---|---|
maximilian-winter/llama-cpp-agent | A tool for easy interaction with Large Language Models (LLMs) to execute structured function calls and generate structured output. | 493 |
ai-hypercomputer/maxtext | A high-performance LLM written in Python/Jax for training and inference on Google Cloud TPUs and GPUs. | 1,529 |
lupantech/scienceqa | Develops a framework for multimodal reasoning and question answering in science and other domains using natural language processing and machine learning techniques. | 606 |
mathllm/math-v | A dataset and code framework to evaluate the ability of Large Multimodal Models (LMMs) to reason mathematically with visual contexts. | 69 |
sheepduke/chameleon | A configuration management library for Common Lisp with profile support. | 17 |
lxtgh/omg-seg | Develops an end-to-end model for multiple visual perception and reasoning tasks using a single encoder, decoder, and large language model. | 1,300 |
linksoul-ai/chinese-llava | A cross-modal conversational AI framework supporting multilingual visual-text dialogue | 353 |
internlm/openaoe | Enables users to engage with multiple large language models simultaneously and access their APIs | 253 |
samholt/l2mac | Automates large code generation and writing tasks using a large language model framework | 70 |
tryagi/langchain | C# implementation of a composability framework for large language models | 576 |
lupantech/mathvista | Evaluating mathematical reasoning in visual contexts using large language models and multimodal AI | 237 |
dreadnode/rigging | An LLM framework that simplifies interacting with language models in production code | 209 |
csuhan/onellm | A framework for training and fine-tuning multimodal language models on various data types | 588 |
stanford-crfm/levanter | A framework for building and training large language models with focus on reproducibility, scalability, and performance. | 516 |
luogen1996/lavin | An open-source implementation of a vision-language instructed large language model | 508 |